用于路径正则化和三维重建的视频帧自动选择

G. Pavoni, M. Dellepiane, M. Callieri, Roberto Scopigno
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引用次数: 5

摘要

视频序列是记录物体和地点状态的有价值的来源。它们很容易获得,并且通常可以确保完全覆盖感兴趣的对象。它们的一个可能用途是恢复获取路径,或场景的3D形状。这可以通过对从视频中提取的一组具有代表性的帧应用动态结构技术来实现。本文提出了一种自动提取预定义数量的代表性帧的方法,以确保序列路径的准确重建,并可能增强场景的三维重建。通过分析起始子集中的相邻帧,并添加/删除帧,使它们之间的距离保持恒定,从而实现自动提取。这确保了正则化路径的重建和对所有场景的优化覆盖。最后,当更详细的对象被框架时,在序列的部分添加更多的帧。这确保了更好的序列描述和更准确的密集重建。该方法具有自动、快速、不依赖于对获取对象或获取策略的任何假设的特点。在各种不同的视频序列上进行了测试,结果表明,无论输入的长度和质量如何,都可以获得令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Selection of Video Frames for Path Regularization and 3D Reconstruction
Video sequences can be a valuable source to document the state of objects and sites. They are easy to acquire and they usually ensure a complete coverage of the object of interest. One of their possible uses is to recover the acquisition path, or the 3D shape of the scene. This can be done by applying structure-from-motion techniques to a representative set of frames extracted from the video. This paper presents an automatic method for the extraction of a predefined number of representative frames that ensures an accurate reconstruction of the sequence path, and possibly enhances the 3D reconstruction of the scene. The automatic extraction is obtained by analyzing adjacent frames in a starting subset, and adding/removing frames so that the distance between them remains constant. This ensures the reconstruction of a regularized path and an optimized coverage of all the scene. Finally, more frames are added in the portions of the sequence when more detailed objects are framed. This ensures a better description of the sequence, and a more accurate dense reconstruction. The method is automatic, fast and independent from any assumption about the acquired object or the acquisition strategy. It was tested on a variety of different video sequences, showing that a satisfying result can be obtained regardless of the length and quality of the input.
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